Deep learning to estimate lithium-ion battery state of health without additional degradation experiments
Beijing Institute of Technology
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Abstract
State of health is a critical state which evaluates the degradation level of batteries. However, it cannot be measured directly but requires estimation. While accurate state of health estimation has progressed markedly, the time- and resource-consuming degradation experiments to generate target battery labels hinder the development of state of health estimation methods. In this article, we design a deep-learning framework to enable the estimation of battery state of health in the absence of target battery labels. This framework integrates a swarm of deep neural networks equipped with domain adaptation to produce accurate estimation. We employ 65 commercial batteries from 5 different manufacturers to generate…
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5Topics & keywords
Topics
Keywords
- Battery (electricity)
- Computer science
- State of health
- Deep learning
- Estimation
- Degradation (telecommunications)
- Artificial intelligence
- State (computer science)
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